- Analytics & Modeling - Machine Learning
- Sensors - Utility Meters
- Renewable Energy
- Demand Planning & Forecasting
- Usage-Based Insurance
- Data Science Services
- System Integration
Gexa Energy, a retail electricity provider in Texas, wanted to offer demand response programs to their commercial and industrial customers in the ERCOT market.
About The Customer
Gexa Energy's customers are commercial and industrial customers located in the ERCOT market in Texas. They have interval data recorder meters and usage in excess of 100 kilowatts.
Gexa Energy partnered with AutoGrid Systems to implement three new demand response programs for their customers. They used AutoGrid's ControlComm platform to enable customers to adjust their energy consumption during times of peak demand or high electricity prices.
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